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A covariate-constraint method to map brain feature space into lower dimensional manifolds
- Source :
- Network Neuroscience, Network Neuroscience, 2021, 5 (1), pp.252-273. ⟨10.1162/netn_a_00176⟩, Network Neuroscience, MIT Press, 2021, 5 (1), pp.252-273. ⟨10.1162/netn_a_00176⟩, Network Neuroscience, Vol 5, Iss 1, Pp 252-273 (2021)
- Publication Year :
- 2021
- Publisher :
- MIT Press - Journals, 2021.
-
Abstract
- Human brain connectome studies aim to both explore healthy brains, and extract and analyze relevant features associated with pathologies of interest. Usually this consists of modeling the brain connectome as a graph and using graph metrics as features. A fine brain description requires graph metrics computation at the node level. Given the relatively reduced number of patients in standard cohorts, such data analysis problems fall in the high-dimension, low-sample-size framework. In this context, our goal is to provide a machine learning technique that exhibits flexibility, gives the investigator an understanding of the features and covariates, allows visualization and exploration, and yields insight into the data and the biological phenomena at stake. The retained approach is dimension reduction in a manifold learning methodology; the originality is that the investigator chooses one (or several) reduced variables. The proposed method is illustrated in two studies. The first one addresses comatose patients; the second one compares young and elderly populations. The method sheds light on the differences between brain connectivity graphs using graph metrics and potential clinical interpretations of these differences.<br />Author Summary Human brain connectome studies aim to both explore healthy brains, and extract and analyze relevant features associated with pathologies of interest. Usually this consists of modeling the brain connectome as a graph and using graph metrics as features. A fine brain description requires graph metrics computation at the node level. Given the relatively reduced number of patients in standard cohorts, such data analysis problems fall in the high-dimension, low-sample-size framework. In this context, our goal is to provide a machine learning technique that exhibits flexibility, gives the investigator an understanding of the features and covariates, allows visualization and exploration, and yields insight into the data and the biological phenomena at stake. The retained approach is dimension reduction in a manifold learning methodology; the originality is that the investigator chooses one (or several) reduced variables. The proposed method is illustrated in two studies. The first one addresses comatose patients; the second one compares young and elderly populations. The method sheds light on the differences between brain connectivity graphs using graph metrics and potential clinical interpretations of these differences.
- Subjects :
- Theoretical computer science
Computer science
Feature vector
Neurosciences. Biological psychiatry. Neuropsychiatry
connectomes
Context (language use)
03 medical and health sciences
0302 clinical medicine
[STAT.AP] Statistics [stat]/Applications [stat.AP]
Artificial Intelligence
Covariate
030304 developmental biology
[STAT.AP]Statistics [stat]/Applications [stat.AP]
0303 health sciences
[STAT.ME] Statistics [stat]/Methodology [stat.ME]
[SCCO.NEUR]Cognitive science/Neuroscience
Applied Mathematics
General Neuroscience
Dimensionality reduction
hub disruption index
[SCCO.NEUR] Cognitive science/Neuroscience
Nonlinear dimensionality reduction
Computer Science Applications
Visualization
Constraint (information theory)
machine learning
Connectome
Graphs
[STAT.ME]Statistics [stat]/Methodology [stat.ME]
030217 neurology & neurosurgery
Research Article
RC321-571
Subjects
Details
- ISSN :
- 24721751
- Volume :
- 5
- Database :
- OpenAIRE
- Journal :
- Network Neuroscience
- Accession number :
- edsair.doi.dedup.....7afc594fbf1a1fea37187b541ef835d4
- Full Text :
- https://doi.org/10.1162/netn_a_00176